Water (Feb 2024)

Collapse Susceptibility Assessment in Taihe Town Based on Convolutional Neural Network and Information Value Method

  • Houlu Li,
  • Bill X. Hu,
  • Bo Lin,
  • Sihong Zhu,
  • Fanqi Meng,
  • Yufei Li

DOI
https://doi.org/10.3390/w16050709
Journal volume & issue
Vol. 16, no. 5
p. 709

Abstract

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The cause mechanism of collapse disasters is complex and there are many influencing factors. Convolutional Neural Network (CNN) has a strong feature extraction ability, which can better simulate the formation of collapse disasters and accurately predict them. Taihe town’s collapse threatens roads, buildings, and people. In this paper, road distance, water distance, normalized vegetation index, platform curvature, profile curvature, slope, slope direction, and geological data are used as input variables. This paper generates collapse susceptibility zoning maps based on the information value method (IV) and CNN, respectively. The results show that the accuracy of the susceptibility assessment of the IV method and the CNN method is 85.1% and 87.4%, and the accuracy of the susceptibility assessment based on the CNN method is higher. The research results can provide some reference for the formulation of disaster prevention and control strategies.

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